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首页> 外文期刊>SIAM Journal on Scientific Computing >INEXACT INTERIOR-POINT METHOD FOR PDE-CONSTRAINED NONLINEAR OPTIMIZATION
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INEXACT INTERIOR-POINT METHOD FOR PDE-CONSTRAINED NONLINEAR OPTIMIZATION

机译:PDE约束的非线性优化的不精确内点法

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摘要

Starting from the inexact interior-point framework from Curtis, Schenk, and Wachter [SIAM J. Sci. Comput., 32 (2012),pp. 3447-3475], we propose an effective Schur-complement slack- control preconditioner for the full Lagrangian Hessian matrix needed at each Newton iteration. Together they yield a scalable, robust, and highly parallel method for the numerical solution of large- scale nonconvex PDE-constrained optimization problems with inequality constraints. Because it uses the full Hessian matrix, modifying it whenever needed, the method not only is globally convergent, but also converges fast locally. Our preconditioner is not tailored to any particular class of PDEs or constraints, but instead judiciously exploits the sparsity structure of the Hessian. Numerical examples from PDE-constrained optimal control, parameter estimation, and full-waveform inversion demonstrate the robustness and efficiency of the method, even in the presence of active inequality constraints.
机译:从Curtis,Schenk和Wachter的不精确的内点框架开始[SIAM J. Sci。计算,32(2012),pp。 [3447-3475],我们为每个Newton迭代所需的完整Lagrangian Hessian矩阵提出了一种有效的Schur补码松弛控制前置条件。它们共同为具有不等式约束的大规模非凸PDE约束优化问题的数值解提供了一种可扩展,健壮且高度并行的方法。由于该方法使用完整的Hessian矩阵,可在需要时对其进行修改,因此该方法不仅可以全局收敛,而且可以在本地快速收敛。我们的预处理器不是为任何特定类别的PDE或约束量身定制的,而是明智地利用了Hessian的稀疏结构。来自PDE约束的最佳控制,参数估计和全波形反演的数值示例证明了该方法的鲁棒性和效率,即使存在主动不等式约束时也是如此。

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